Investigating the price determinants of the European Emission Trading System: a non-parametric approach
The European carbon market plays a pivotal role in the European Union's ambitious target of achieving carbon neutrality by 2050. Understanding the intricacies of factors influencing European Union Emission Trading System (EU ETS) market prices is paramount for effective policy making and strate...
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Main Authors | , , , |
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Format | Journal Article |
Language | English |
Published |
07.06.2024
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Subjects | |
Online Access | Get full text |
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Summary: | The European carbon market plays a pivotal role in the European Union's
ambitious target of achieving carbon neutrality by 2050. Understanding the
intricacies of factors influencing European Union Emission Trading System (EU
ETS) market prices is paramount for effective policy making and strategy
implementation. We propose the use of the Information Imbalance, a recently
introduced non-parametric measure quantifying the degree to which a set of
variables is informative with respect to another one, to study the
relationships among macroeconomic, economic, uncertainty, and energy variables
concerning EU ETS prices. Our analysis shows that in Phase 3 commodity related
variables such as the ERIX index are the most informative to explain the
behaviour of the EU ETS market price. Transitioning to Phase 4, financial
fluctuations take centre stage, with the uncertainty in the EUR/CHF exchange
rate emerging as a crucial determinant. These results reflect the disruptive
impacts of the COVID-19 pandemic and the energy crisis in reshaping the
importance of the different variables. Beyond variable analysis, we also
propose to leverage the Information Imbalance to address the problem of
mixed-frequency forecasting, and we identify the weekly time scale as the most
informative for predicting the EU ETS price. Finally, we show how the
Information Imbalance can be effectively combined with Gaussian Process
regression for efficient nowcasting and forecasting using very small sets of
highly informative predictors. |
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DOI: | 10.48550/arxiv.2406.05094 |